Application of Deep Learning to Solar Data: 1. Overview

  • Moon, Yong-Jae (School of Space Research, Kyung Hee University) ;
  • Park, Eunsu (School of Space Research, Kyung Hee University) ;
  • Kim, Taeyoung (School of Space Research, Kyung Hee University) ;
  • Lee, Harim (School of Space Research, Kyung Hee University) ;
  • Shin, Gyungin (School of Space Research, Kyung Hee University) ;
  • Kim, Kimoon (School of Space Research, Kyung Hee University) ;
  • Shin, Seulki (School of Space Research, Kyung Hee University) ;
  • Yi, Kangwoo (School of Space Research, Kyung Hee University)
  • Published : 2019.04.10

Abstract

Multi-wavelength observations become very popular in astronomy. Even though there are some correlations among different sensor images, it is not easy to translate from one to the other one. In this study, we apply a deep learning method for image-to-image translation, based on conditional generative adversarial networks (cGANs), to solar images. To examine the validity of the method for scientific data, we consider several different types of pairs: (1) Generation of SDO/EUV images from SDO/HMI magnetograms, (2) Generation of backside magnetograms from STEREO/EUVI images, (3) Generation of EUV & X-ray images from Carrington sunspot drawing, and (4) Generation of solar magnetograms from Ca II images. It is very impressive that AI-generated ones are quite consistent with actual ones. In addition, we apply the convolution neural network to the forecast of solar flares and find that our method is better than the conventional method. Our study also shows that the forecast of solar proton flux profiles using Long and Short Term Memory method is better than the autoregressive method. We will discuss several applications of these methodologies for scientific research.

Keywords

Acknowledgement

Grant : Study on analysis and prediction technique of solar flares

Supported by : Institute for Information & communications Technology Promotion(IITP)